LGMay 12

Limits of Learning Linear Dynamics from Experiments

arXiv:2605.1201030.0
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Provides theoretical guarantees for identifiability in controlled LTI systems, addressing a critical gap for practitioners relying on data-driven models.

The paper characterizes fundamental limits on learning linear dynamics from experiments, showing that even when full system identifiability fails, dynamics on the reachable subspace are uniquely determined.

Learning governing dynamics from data is a common goal across the sciences, yet it is only well-posed when the underlying mechanisms are identifiable. In practice, many data-driven methods implicitly assume identifiability; when this assumption fails, estimated models can yield spurious predictions and invalid mechanistic conclusions. Classical identifiability guarantees for controlled linear time-invariant (LTI) systems provide sufficient conditions -- controllability and persistent excitation -- but leave open whether identifiability holds when these conditions fail, and which parts of the system remain identifiable without full identifiability. We show that the experimental setup, i.e., the realized initial state and control input, dictates a fundamental limit on the information recoverable from the observed trajectory. We develop a geometric characterization of this limit and derive a closed-form description of all systems consistent with the experimental setup. Crucially, we prove that even when the full system is not identifiable, the restricted dynamics on the subspace reachable by the experiment remain uniquely determined.

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